Secure medical image watermarking based on reversible data hiding with Arnold's cat map

Aulia Arham, Novia Lestari
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引用次数: 0

Abstract

The process of restoring medical images to their original form after the extraction process in application watermarking is crucial for ensuring their authenticity. Inaccurate diagnoses can occur due to distortions in medical images from conventional data embedding applications. To address this issue, reversible data hiding (RDH) method has been proposed by several researchers in recent years to embed data in medical images. After the extraction process, images can be restored to their original form with a reversible data-hiding method. In the past few years, several RDH methods have been rapidly developed, which are based on the concept of difference expansion (DE). However, it is crucial to pay attention to the security of the medical image watermarking method, the embedded data with RDH method can be easily modified, accessed, and altered by unauthorized individuals if they know the employed method. This research suggests a new approach to secure the RDH method through the use of Chaotic Map-based Arnold's Cat Map algorithms on the medical images. Data embedding was performed on random medical images using a DE method. Four gray-scale medical image modalities were used to assess the proposed method's efficacy. In our approach, we can incorporate capacity up to 0.62 bpp while maintaining a visual quality up to 41.02 dB according to PSNR and 0.9900 according to SSIM. The results indicated that it can enhance the security of the RDH method while retaining the ability to embed data and preserving the visual appearance of the medical images.
安全医学图像水印基于可逆数据隐藏与阿诺德的猫地图
在应用水印中,将医学图像提取后恢复到原始状态的过程是保证图像真实性的关键。由于传统数据嵌入应用的医学图像失真,可能会出现不准确的诊断。为了解决这一问题,近年来一些研究者提出了可逆数据隐藏(RDH)方法来将数据嵌入到医学图像中。经过提取过程后,采用可逆的数据隐藏方法将图像恢复到原始状态。近年来,基于差分展开(DE)概念的RDH方法得到了迅速发展。然而,医学图像水印方法的安全性是至关重要的,使用RDH方法嵌入的数据很容易被未经授权的个人修改、访问和改变,如果他们知道所采用的方法。本研究提出了一种新的方法,通过在医学图像上使用基于混沌地图的Arnold’s Cat Map算法来保护RDH方法。采用DE方法对随机医学图像进行数据嵌入。采用四种灰度医学图像模式来评估该方法的有效性。在我们的方法中,我们可以结合高达0.62 bpp的容量,同时根据PSNR和SSIM保持高达41.02 dB和0.9900的视觉质量。结果表明,该方法在保留数据嵌入能力和保留医学图像视觉外观的同时,提高了RDH方法的安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
CiteScore
3.00
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0.00%
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